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Improvement of Accuracy of Well-Known Convoluational Neural Networks by Efficient Hybrid Strategy

机译:高效的混合策略提高卷积神经网络的精度

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Convolutional neural networks have existed for many years, but recently they have been developed to a greater depth and width than ever before with the increase in the computing power of graphics processing units. Convolutional neural networks are widely used in a variety of artificial intelligence applications, including in manufacturing, agriculture, and medicine. The use of artificial intelligence in various industrial fields is expected to increase. However, improvements in network training efficiency have not resulted in a reciprocal improvement in computational power for identification applications. This paper proposes several types of neural networks that are based on well-known networks such as AlexNet, GoogleNet and ResNet, whose characteristics have been captured and implemented in lower layer neural networks. From the experimental results, using these hybrid neural networks can bring improved accuracy, with well optimized computational time costs compared to networks that require a large amount of computation.
机译:卷积神经网络已经存在了很多年,但是随着图形处理单元的计算能力的提高,它们已经发展到比以往更大的深度和宽度。卷积神经网络被广泛用于各种人工智能应用中,包括制造业,农业和医学。人工智能在各个工业领域的使用有望增加。但是,网络训练效率的提高并未导致识别应用程序的计算能力得到相应的提高。本文提出了几种基于著名网络(例如AlexNet,GoogleNet和ResNet)的神经网络,它们的特征已在较低层的神经网络中捕获并实现。从实验结果来看,与需要大量计算的网络相比,使用这些混合神经网络可以带来更高的准确性,并具有优化的计算时间成本。

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